Deep Reinforcement Learning-Based Resource Allocation for UAV-Enabled Federated Edge Learning

Tianze Liu;Tiankui Zhang;Jonathan Loo;Yapeng Wang
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引用次数: 1

Abstract

The resource allocation of the federated learning (FL) for unmanned aerial vehicle (UAV) swarm systems are investigated. The UAV swarms based on FL realize the artificial intelligence (AI) applications by means of distributed training on the basis of ensuring the security of private data. However, the direct application of the FL in UAV swarms will incur high overhead. Therefore, in this article, we consider the resource allocation problem in FL for UAV swarms. To avoid the high communication overhead between UAVs and the central server, we proposed an FL framework for UAV swarms based on mobile edge computing (MEC) in which model aggregation is migrated to edge servers. In the proposed framework, the total cost of the FL is defined as the weighted sum of the total delay of UAV swarms to complete the FL and system energy consumption. In order to minimize the total cost of FL, we propose a resource allocation algorithm for joint optimization of computing resources and multi-UAV association based on deep reinforcement learning (DRL). The simulation result shows that: 1) compared with the benchmark algorithm, the proposed algorithm can effectively reduce the total cost of FL; 2) the proposed algorithm can realize the trade-off between task completion delay and system energy consumption through weight changes.
基于深度强化学习的无人机联邦边缘学习资源分配
研究了无人机(UAV)群系统的联邦学习(FL)资源分配问题。基于FL的无人机群在保证私有数据安全的基础上,通过分布式训练的方式实现人工智能应用。然而,在无人机群中直接应用该算法会产生较高的开销。因此,本文主要研究了无人机群飞行中的资源分配问题。为了避免无人机与中心服务器之间的高通信开销,提出了一种基于移动边缘计算(MEC)的无人机群的FL框架,该框架将模型聚合迁移到边缘服务器。在该框架中,飞行总成本定义为无人机群完成飞行的总延迟与系统能耗的加权和。为了使飞行总成本最小化,提出了一种基于深度强化学习(DRL)的计算资源联合优化和多无人机关联的资源分配算法。仿真结果表明:1)与基准算法相比,所提算法能有效降低FL的总成本;2)该算法可以通过权值的变化实现任务完成延迟与系统能耗之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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